Token Devours One-Third of Payroll, Silicon Valley's AI Bill is Spinning Out of Control

marsbit发布于2026-07-06更新于2026-07-06

文章摘要

The article discusses the dual reality of AI token costs in Silicon Valley. While research firm SemiAnalysis reports spending 30% of its employee salary budget on internal LLM tokens—translating to massive productivity gains like converting complex Excel models in minutes—other giants are struggling with ballooning, uncontrolled AI bills. Uber exhausted its annual AI budget in months after rapid engineer adoption, and Microsoft is cutting third-party AI tools due to high costs. NVIDIA's CEO argues tokens are becoming "means of production" and plans substantial AI budgets per engineer. Despite current cost concerns, the analysis emphasizes that cost collapse is just beginning. Through software optimizations (like 14x throughput boosts) and next-gen hardware (e.g., GB300 NVL72 with 17-32x H100 performance), real token costs can fall far below list prices. Anthropic's gross margins reportedly soared as token prices dropped. Gartner predicts a >90% inference cost drop by 2030. The piece highlights a split: massive AI capex ($740B announced) contrasts with tech layoffs and minimal measured economic impact so far. The transition mirrors past infrastructure shifts—investment precedes widespread productivity. For early adopters like SemiAnalysis, tokens already deliver high leverage; for others, the choice is to adopt now or risk falling behind.

Only $0.99 per million Tokens.

This is the real cost on the bill of SemiAnalysis—Silicon Valley's most hardcore semiconductor research firm.

But what's even more shocking is this number: Internal large model Token expenditure already accounts for 30% of total employee salaries.

It sounds like a lot—but flip the calculation: the output bought with this money previously required several times the human resource cost to cover. Per capita consumption nears 5 billion Tokens monthly, over five times Meta's per capita level, with core contributors' monthly consumption exceeding 100 billion.

Tasks that used to take junior analysts hours to complete, like converting Excel models or creating financial report charts, are now done in minutes, costing just a few dollars.

SemiAnalysis's own assessment hits the nail on the head: This isn't a 10% efficiency boost; it's the unit economics of professional services being rewritten.

Research firms, hedge funds, law firms—for all industries reliant on human intellect, Token expenditure reaching 20-30% of payroll is only a matter of time.

NVIDIA CEO Jensen Huang is more anxious than anyone.

At this year's GTC conference, he put it bluntly: An engineer with a $500k salary spends less than $250k on Tokens by year-end?

"I would be absolutely furious."

He plans to give every NVIDIA engineer a Token budget equivalent to six months' salary, and have 75,000 employees work alongside 7.5 million AI agents.

Not using AI? Huang says it's no different than a chip designer insisting on paper and pencil.

Token is no longer just a tool; it's becoming the "means of production" of the new era.

But the Other Half of Silicon Valley is Furious Over the AI Bill

Interestingly, while SemiAnalysis is saving real money with Tokens, giants in the Valley are tearing their hair out over AI bills.

Uber is the classic case.

Late last year, the company promoted Claude Code to 5,000 engineers, even creating leaderboards—more usage meant higher rank, fueling internal competition.

It worked too well: Engineer adoption was 32% in February, skyrocketed to 84% in March, and by April, 95% of engineers used AI monthly, with 70% of submitted code AI-generated. The annual budget? Already spent.

The CTO said they had to "redo the budget from scratch." Later it got stricter—Bloomberg reported Uber set a $1,500 monthly Token cap per employee, requiring special approval to exceed.

But COO Andrew Macdonald admitted on a podcast: AI usage is indeed rising, but its connection to consumer feature innovation... isn't visible yet.

Microsoft's situation is even more bizarre. Last month, The Verge reported Microsoft is canceling most Claude Code licenses, shifting to its own GitHub Copilot CLI.

The reason is simple: Money was being spent faster than value was being produced.

NVIDIA's VP of Applied Deep Learning, Bryan Catanzaro, was more direct in April: "For my team, compute costs far exceed employee costs."

An MIT 2024 study: In jobs primarily involving visual content, AI automation is economically viable in only 23% of scenarios.

In the remaining 77%, hiring people is cheaper than using AI.

There are even engineers complaining about AI agents "destroying his database and network" during use—he called it the cost of "overuse."

Sky-high budgets, runaway usage, constant mishaps—Silicon Valley is in the most fractured phase of AI economics.

On one side, unprecedented productivity gains; on the other, bills inflating at an equally unprecedented pace.

The Cost Collapse Has Only Just Begun

But SemiAnalysis's core argument is: Don't focus on today's price; the cost collapse has just started.

First, the software side.

Running DeepSeek R1 on a B300, with pure software optimizations via wideEP, disaggregation, and MTP, single GPU throughput can jump from a baseline of 1,000 tokens/second to 14,000 tokens/second—a 14x boost, purely through code.

Now, the hardware side.

An optimally configured GB300 NVL72 has 17x the throughput of an H100, jumping to 32x when switching to FP4 precision.

Opus 4.7 is priced at $5 per million input, $25 per million output, which seems expensive.

But due to agent workloads having an input-to-output ratio as high as 300:1, plus over 90% cache hit rate, the actual blended cost is compressed to $0.99.

Less than one-fifth of the list price.

Combine software and hardware, and one conclusion is hard to avoid: The gross margin expansion of large models isn't a one-off pricing coincidence; it's a structural trend.

Anthropic's ARR surged from $9 billion to over $44 billion this year, with gross margins jumping from 38% to over 70%—Tokens are getting cheaper, but the sellers are getting richer.

A Gartner report from March corroborates this: By 2030, the inference cost for trillion-parameter models will be over 90% lower than in 2025.

SemiAnalysis's judgment is clear: If you want to predict Token prices in 2027, the answer is one word—down.

The Money is Spent. What's Next?

This is precisely the most fractured aspect of AI today: Global tech companies have announced $740 billion in AI capital expenditure this year, a 69% surge from last year; simultaneously, tech industry layoffs are already outpacing last year's total.

Money is burning, people are being laid off, but Goldman Sachs' chief economist told a blunt truth—The actual economic impact of AI has been essentially zero so far.

It's not that AI is ineffective, but the growing pains of every infrastructure revolution: First, spend to build the pipes, then wait for the water to flow.

It was true for the electrical grid, the internet, and AI is no exception.

The only difference is that the speed of pipe-laying and the speed of water arriving are on a scale previous generations never saw.

SemiAnalysis is already on the side where the water is flowing—30% of payroll is buying several-fold output leverage, and the cost curve is still plummeting.

As for other companies: Wade across the river now, or chase after the cities are already built on the other side.

References:

https://x.com/SemiAnalysis_/status/2070915305858007345

This article is from WeChat public account "New Zhiyuan", author: ASI Revelation, editor: Solomon

热门币种推荐

相关问答

QWhat percentage of employee salary does the internal large model token expenditure account for at SemiAnalysis?

AThe internal large model token expenditure accounts for 30% of total employee salary at SemiAnalysis.

QWhat is the key argument of SemiAnalysis regarding the current AI economic situation?

ASemiAnalysis argues that we should not focus on today's AI prices, as a cost collapse has just begun, driven by both software and hardware optimizations leading to structurally lower token costs.

QAccording to the article, what was a major issue Uber faced with its AI tool adoption among engineers?

AUber faced a major issue where the adoption of its AI tool, Claude Code, was so successful that usage surged from 32% of engineers in February to 95% in April, exhausting the annual budget within months.

QWhat does NVIDIA CEO Jensen Huang say about engineers who do not use AI?

AJensen Huang says that not using AI is equivalent to a chip designer insisting on using paper and pencil.

QWhat is the projected trend for the inference cost of trillion-parameter large models by 2030 according to Gartner?

AAccording to Gartner's report, by 2030, the inference cost for trillion-parameter large models is projected to decline by over 90% compared to 2025.

你可能也喜欢

特朗普,最会炒股的美国总统

美国联邦政府道德办公室公布的文件显示,特朗普2025年个人收入超22亿美元,创总统任内年收入纪录,远超奥巴马与拜登的净资产。其收入主要来自加密货币(约14亿美元)和房地产(约5.75亿美元),两者合计占比近90%。 加密货币收入中,特朗普推出的个人模因币$TRUMP带来超6亿美元授权费,其家族成立的World Liberty Financial代币销售及股权出售亦贡献巨额收益。房地产方面,其经常光顾的海湖庄园等度假村和高尔夫俱乐部收入显著增长,海湖庄园年收入超7700万美元,飙升50%。 2025年,特朗普进行了超2.2万笔股票交易,平均每日87笔,远高于其首任任期及拜登的交易频率。媒体报道指出,其交易时机多次与重大政策出台前后吻合,引发关于利益冲突的质疑。白宫解释称交易由信托团队执行,但该信托由家族管理,并非独立盲信托。 舆论批评特朗普将总统影响力转化为商业收益,例如从批评加密货币转为大力支持并从中获利,其家族也从相关项目获利至少23亿美元;海湖庄园会员费因“与特朗普交流机会”飙升至百万美元级别;其股票持仓中包含英伟达等受政策影响的公司,并在公开场合频繁提及。 支持者视之为商业成功,批评者则认为这模糊了公共权力与私人商业的界限,凸显现有道德准则的不足。特朗普集团则称这份财务披露体现了高度透明。关于其财富积累是否合法的争议,可能推动美国政治道德规范的新讨论。

marsbit14分钟前

特朗普,最会炒股的美国总统

marsbit14分钟前

OUSD 假合作风波?稳定币与巨头背书的信用游戏

上周,Open Standard 推出美元稳定币 OpenUSD(OUSD),并公布了140多家企业组成的豪华背书名单,包括 Visa、万事达卡、Stripe、贝莱德、谷歌、三星、Coinbase 等巨头。此举一度引发市场震动,但名单很快遭到质疑。多家韩国企业如三星电子、新韩金融等出面澄清,称仅进行过初步接洽或表示会评估,并未正式同意加入,部分公司甚至是通过新闻才得知自己被列为成员。美国也有行业人士指出,名单存在误导性。 OUSD 宣称提供零手续费铸造赎回、无交易量上限,并将大部分储备收益分享给合作伙伴。然而,这种模式使得被列入名单具有实际商业和信誉含义,加剧了争议。文章指出,利用巨头名声造势是加密行业的常见营销手法,并引用了此前 Facebook 的 Libra(后更名 Diem)项目为例:该项目初期同样拥有全明星联盟,但在监管压力下,PayPal、Visa 等核心伙伴迅速退出,最终项目失败出售。 面对竞争,Circle CEO Jeremy Allaire 表示欢迎,但他指出稳定币市场具有网络效应,趋向赢家通吃。他认为联盟模式历史上协调困难、进度缓慢,且将收入全部分配会导致基础设施投入不足。目前稳定币市场由 USDT 和 USDC 主导,两者合计占据近90%市场份额。 文章总结道,稳定币的成功最终取决于真实的使用场景和用户,而非营销声势。OUSD 虽拥有部分真实背书和差异化模型,但其前景仍需市场检验。这场风波再次揭示了加密行业依赖“巨头站台”进行信用背书所伴随的风险。

链捕手48分钟前

OUSD 假合作风波?稳定币与巨头背书的信用游戏

链捕手48分钟前

交易

现货

热门文章

如何购买S

欢迎来到HTX.com!我们已经让购买Sonic(S)变得简单而便捷。跟随我们的逐步指南,放心开始您的加密货币之旅。第一步:创建您的HTX账户使用您的电子邮件、手机号码注册一个免费账户在HTX上。体验无忧的注册过程并解锁所有平台功能。立即注册第二步:前往买币页面,选择您的支付方式信用卡/借记卡购买:使用您的Visa或Mastercard即时购买Sonic(S)。余额购买:使用您HTX账户余额中的资金进行无缝交易。第三方购买:探索诸如Google Pay或Apple Pay等流行支付方法以增加便利性。C2C购买:在HTX平台上直接与其他用户交易。HTX场外交易台(OTC)购买:为大量交易者提供个性化服务和竞争性汇率。第三步:存储您的Sonic(S)购买完您的Sonic(S)后,将其存储在您的HTX账户钱包中。您也可以通过区块链转账将其发送到其他地方或者用于交易其他加密货币。第四步:交易Sonic(S)在HTX的现货市场轻松交易Sonic(S)。访问您的账户,选择您的交易对,执行您的交易,并实时监控。HTX为初学者和经验丰富的交易者提供了友好的用户体验。

2.8k人学过发布于 2025.01.15更新于 2026.06.02

如何购买S

相关讨论

欢迎来到HTX社区。在这里,您可以了解最新的平台发展动态并获得专业的市场意见。以下是用户对S(S)币价的意见。

活动图片